Marri Kiran, Swaminathan Ramakrishnan
NIID Lab (MSB 207), Biomedical Engineering Group, Department of Applied Mechanics, Indian Institute of Technology (IIT) Madras, Chennai, India.
Proc Inst Mech Eng H. 2016 Sep;230(9):829-839. doi: 10.1177/0954411916654198. Epub 2016 Aug 3.
Muscle contractions can be categorized into isometric, isotonic (concentric and eccentric) and isokinetic contractions. The eccentric contractions are very effective for promoting muscle hypertrophy and produce larger forces when compared to the concentric or isometric contractions. Surface electromyography signals are widely used for analyzing muscle activities. These signals are nonstationary, nonlinear and exhibit self-similar multifractal behavior. The research on surface electromyography signals using multifractal analysis is not well established for concentric and eccentric contractions. In this study, an attempt has been made to analyze the concentric and eccentric contractions associated with biceps brachii muscles using surface electromyography signals and multifractal detrended moving average algorithm. Surface electromyography signals were recorded from 20 healthy individuals while performing a single curl exercise. The preprocessed signals were divided into concentric and eccentric cycles and in turn divided into phases based on range of motion: lower (0°-90°) and upper (>90°). The segments of surface electromyography signal were subjected to multifractal detrended moving average algorithm, and multifractal features such as strength of multifractality, peak exponent value, maximum exponent and exponent index were extracted in addition to conventional linear features such as root mean square and median frequency. The results show that surface electromyography signals exhibit multifractal behavior in both concentric and eccentric cycles. The mean strength of multifractality increased by 15% in eccentric contraction compared to concentric contraction. The lowest and highest exponent index values are observed in the upper concentric and lower eccentric contractions, respectively. The multifractal features are observed to be helpful in differentiating surface electromyography signals along the range of motion as compared to root mean square and median frequency. It appears that these multifractal features extracted from the concentric and eccentric contractions can be useful in the assessment of surface electromyography signals in sports medicine and training and also in rehabilitation programs.
肌肉收缩可分为等长收缩、等张收缩(向心收缩和离心收缩)和等速收缩。与向心收缩或等长收缩相比,离心收缩对于促进肌肉肥大非常有效,并且能产生更大的力量。表面肌电图信号被广泛用于分析肌肉活动。这些信号是非平稳、非线性的,并且呈现出自相似的多重分形行为。利用多重分形分析对向心收缩和离心收缩的表面肌电图信号进行的研究尚未完善。在本研究中,尝试使用表面肌电图信号和多重分形去趋势移动平均算法来分析与肱二头肌相关的向心收缩和离心收缩。在20名健康个体进行单组弯举运动时记录表面肌电图信号。预处理后的信号被分为向心周期和离心周期,并根据运动范围进一步分为阶段:下部(0°-90°)和上部(>90°)。对表面肌电图信号片段进行多重分形去趋势移动平均算法处理,除了提取传统的线性特征如均方根和中位数频率外,还提取了多重分形特征,如多重分形强度、峰值指数值、最大指数和指数指数。结果表明,表面肌电图信号在向心周期和离心周期中均呈现多重分形行为。与向心收缩相比,离心收缩中多重分形的平均强度增加了15%。分别在上部向心收缩和下部离心收缩中观察到最低和最高的指数指数值。与均方根和中位数频率相比,多重分形特征有助于沿着运动范围区分表面肌电图信号。从向心收缩和离心收缩中提取的这些多重分形特征似乎可用于运动医学和训练以及康复计划中表面肌电图信号的评估。